用线性判别分析进行阿拉伯文文本分类

Fawaz S. Al-Anzi, Dia AbuZeina
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引用次数: 2

摘要

线性判别分析(LDA)是一种广泛应用于模式识别的降维技术。LDA旨在通过将原始数据(如词袋文本表示)的维数降至较低维空间来生成有效的特征向量。因此,LDA是一种方便的文本分类方法,它具有巨大的维数特征向量。本文对两种基于LDA的阿拉伯语文本分类方法进行了实证研究。第一种方法是基于计算(类间与类内)比例散点的广义特征向量,第二种方法包括线性分类函数,假设相等的总体协方差矩阵(即混合样本协方差矩阵)。我们使用了一个文本数据集合,其中包含属于五个类别的1,750个文档。测试集包含属于五个类别的250个文档(每个类别50个文档)。实验结果表明,线性分类函数方法优于特征值分解方法。我们强调,这项工作的目标是演示如何在文本分类中使用LDA算法,而不是将其性能与其他已知的文本分类算法进行比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Arabic text classification using linear discriminant analysis
The linear discriminant analysis (LDA) is a dimensionality reduction technique that is widely used in pattern recognition applications. The LDA aims at generating effective feature vectors by reducing the dimensions of the original data (e.g. bag-of-words textual representation) into a lower dimensional space. Hence, the LDA is a convenient method for text classification that is known by huge dimensional feature vectors. In this paper, we empirically investigated two LDA based methods for Arabic text classification. The first method is based on computing the generalized eigenvectors of the ratio (between-class to within-class) scatters, the second method includes linear classification functions that assume equal population covariance matrices (i.e. pooled sample covariance matrix). We used a textual data collection that contains 1,750 documents belong to five categories. The testing set contains 250 documents belong to five categories (50 documents for each category). The experimental results show that the linear classification functions method outperforms the eigenvalue decomposition method. We emphasize that the goal of this work is to demonstrate how to employ the LDA algorithm in text classification rather than comparing the performance with other well-known text classification algorithms.
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